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Ploeckinger on analysing cosmological hydrodynamic simulations with new statistical methods. Please indicate preference for projects (if any) in your motivation letter. Your future tasks: You actively
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scientists and students, but also different research areas, a variety of ethnographic methods, a large number of outstanding research projects and appreciative collegial exchange. ANTHROFUTURE focuses
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statistical data analysis methods are an advantage Experience in writing international scientific publications is an advantage High motivation, curiosity and creativity Social and communication skills Ability
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working in research projects. Excellent knowledge of English and rhetorical skills in order to be able to work in an international scientific environment. Methodical and autonomous work ethic with a high
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novel control, mitigation and risk assessment methods for biotoxins MSCA Doctoral Networks aim to train entrepreneurial, innovative and resilient doctoral candidates, able to face current and future
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Systems. For this, we apply a combination of methods from both Physics and Mathematics, complemented by concepts from Theoretical Computer Science. Our research group is located jointly at the Faculty
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Computational Imaging Research Lab (CIR), Department of Biomedical Imaging and Image-guided Therapy | Austria | about 1 month ago
, startups and patient partners. Your Mission as PhD is to develop novel machine-learning methods to (1) detect small, clinically meaningful changes in joints, (2) enable robust longitudinal monitoring and
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mobility for maximum enzymatic activity on cellulose and other carbohydrate polymers. Methods: Bioinformatic (sequence and structure based) selection of CBMs and LPMOs. Structure-based protein engineering
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. For this, we apply a combination of methods from both Physics and Mathematics, complemented by concepts from Theoretical Computer Science. Our research group is located jointly at the Faculty of Physics – as
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converters. Very good analytical skills and methods Experience with simulation and design tools such as Plexim, PSIM, FEM tools, Altium Designer and MATLAB Experience in the development, troubleshooting and